Deep learning and its application to general image classification

Po-Hsien Liu, S. Su, Ming-Chang Chen, Chih-Ching Hsiao
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引用次数: 16

Abstract

Deep learning has recently exhibited good performance in many applications. The convolution neural network is an often-used architecture for deep learning and has been widely used in computer vision and audio recognition, and outperformed other related handcraft designed feature in recent years. These techniques compared to other artificial intelligence algorithms and handcraft features need extremely much more time in training and testing and then were not widely used in the early days. Our study is about the impacts of different factors used in the convolution neural network. The considered factors are network depth, numbers of filters, and filter sizes. The used data set is the CIFAR dataset. According to our experiments, some suggestions about those factors are recommended in this study.
深度学习及其在一般图像分类中的应用
深度学习最近在许多应用中表现出良好的性能。卷积神经网络是一种常用的深度学习架构,近年来在计算机视觉和音频识别中得到了广泛的应用,并且优于其他相关的手工设计特征。与其他人工智能算法和手工功能相比,这些技术需要花费更多的时间进行训练和测试,因此在早期并没有得到广泛应用。我们的研究是关于不同因素对卷积神经网络的影响。考虑的因素包括网络深度、过滤器数量和过滤器大小。使用的数据集是CIFAR数据集。根据我们的实验,本研究对这些因素提出了一些建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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